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Heuristic Based Learning of Parameters for Dictionaries in Sparse Representations

机译:基于启发式的稀疏表示字典参数学习

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Sparse representation has attracted attention recently by successful applications in the computer vision domain. The success of these methods depends on the learned dictionary as it represents the latent feature space of the data. Different parameters affect the dictionary learning process like the number of atoms and sparsity limit. Generally, these parameters are learned through trial and error experimentation which requires a lot of time. In the literature, no approach is seen that attempts to relate these dictionary parameters to the data. In this paper, we propose heuristics for this problem. These heuristics use statistical properties of the data to estimate dictionary parameters. The proposed heuristics are applied to several datasets.
机译:稀疏表示法最近在计算机视觉领域的成功应用引起了人们的关注。这些方法的成功取决于学习的字典,因为它代表了数据的潜在特征空间。不同的参数会影响字典学习过程,例如原子数和稀疏度限制。通常,这些参数是通过反复试验来学习的,这需要大量时间。在文献中,没有找到尝试将这些字典参数与数据相关联的方法。在本文中,我们提出了针对该问题的启发式方法。这些试探法使用数据的统计属性来估计字典参数。拟议的启发式方法应用于多个数据集。

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